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Risk Bounds for Low Cost Bipartite Ranking

机译:低成本二分位排名的风险范围

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Bipartite ranking is an important supervised learning problem; however, unlike regression or classification, it has a quadratic dependence on the number of samples. To circumvent the prohibitive sample cost, many recent work focus on stochastic gradient-based methods. In this paper we consider an alternative approach, which leverages the structure of the widely-adopted pairwise squared loss, to obtain a stochastic and low cost algorithm that does not require stochastic gradients or learning rates. Using a novel uniform risk bound—based on matrix and vector concentration inequalities—we show that the sample size required for competitive performance against the all-pairs batch algorithm does not have a quadratic dependence. Generalization bounds for both the batch and low cost stochastic algorithms are presented. Experimental results show significant speed gain against the batch algorithm, as well as competitive performance against state-of-the-art bipartite ranking algorithms on real datasets.
机译:二分排名是一个重要的监督学习问题;但是,与回归或分类不同,它对样本数量具有二次依赖性。为了规避禁止的样本成本,最近的工作重点是基于随机梯度的方法。在本文中,我们考虑了一种替代方法,它利用了广泛采用的成对平方损失的结构,以获得随机和低成本算法,不需要随机梯度或学习率。使用基于矩阵和载体浓度的新颖均匀风险绑定 - 我们表明,对全对批量算法的竞争性能所需的样本大小没有二次依赖性。呈现了批量和低成本随机算法的泛化界。实验结果表明,对批量算法的显着速度增益,以及针对真实数据集的最先进的二分位排名算法的竞争性能。

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